A community palm model
CoRR(2024)
Abstract
Palm oil production has been identified as one of the major drivers of
deforestation for tropical countries. To meet supply chain objectives,
commodity producers and other stakeholders need timely information of land
cover dynamics in their supply shed. However, such data are difficult to obtain
from suppliers who may lack digital geographic representations of their supply
sheds and production locations. Here we present a "community model," a machine
learning model trained on pooled data sourced from many different stakeholders,
to develop a specific land cover probability map, in this case a semi-global
oil palm map. An advantage of this method is the inclusion of varied inputs,
the ability to easily update the model as new training data becomes available
and run the model on any year that input imagery is available. Inclusion of
diverse data sources into one probability map can help establish a shared
understanding across stakeholders on the presence and absence of a land cover
or commodity (in this case oil palm). The model predictors are annual
composites built from publicly available satellite imagery provided by
Sentinel-1, Sentinel-2, and ALOS DSM. We provide map outputs as the probability
of palm in a given pixel, to reflect the uncertainty of the underlying state
(palm or not palm). The initial version of this model provides global accuracy
estimated to be approximately 90
partitioned test data. This model, and resulting oil palm probability map
products are useful for accurately identifying the geographic footprint of palm
cultivation. Used in conjunction with timely deforestation information, this
palm model is useful for understanding the risk of continued oil palm
plantation expansion in sensitive forest areas.
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